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A Method for Privacy-preserving Collaborative Filtering Recommendations

机译:一种保护隐私的协同过滤建议的方法

摘要

With the continuous growth of the Internet and the progress of electronic commerce the issues of product recommendation and privacy protection are becoming increasingly important. Recommender Systems aim to solve the information overload problem by providing accurate recommendations of items to users. Collaborative filtering is considered the most widely used recommendation method for providing recommendations of items or users to other users in online environments. Additionally, collaborative filtering methods can be used with a trust network, thus delivering to the user recommendations from both a database of ratings and from users who the person who made the request knows and trusts. On the other hand, the users are having privacy concerns and are not willing to submit the required information (e.g., ratings for products), thus making the recommender system unusable. In this paper, we propose (a) an approach to product recommendation that is based on collaborative filtering and uses a combination of a ratings network with a trust network of the user to provide recommendations and (b) 'neighbourhood privacy' that employs a modified privacy-aware role-based access control model that can be applied to databases that utilize recommender systems. Our proposed approach (1) protects user privacy with a small decrease in the accuracy of the recommendations and (2) uses information from the trust network to increase the accuracy of the recommendations, while, (3) providing privacy-preserving recommendations, as accurate as the recommendations provided without the privacy-preserving approach or the method that increased the accuracy applied.
机译:随着Internet的不断发展和电子商务的发展,产品推荐和隐私保护问题变得越来越重要。推荐系统旨在通过向用户提供准确的项目建议来解决信息过多的问题。协作过滤被认为是用于在在线环境中向其他用户提供项目或用户推荐的最广泛使用的推荐方法。另外,协作过滤方法可以与信任网络一起使用,从而从评级数据库和提出请求的人知道并信任的用户那里向用户提供推荐。另一方面,用户有隐私问题,并且不愿意提交所需的信息(例如,产品的等级),从而使得推荐系统无法使用。在本文中,我们提出(a)一种基于协作过滤的产品推荐方法,并结合使用评级网络和用户的信任网络来提供推荐;以及(b)采用经过修改的“社区隐私”基于隐私的基于角色的访问控制模型,可以应用于利用推荐系统的数据库。我们提出的方法(1)通过稍微降低建议的准确性来保护用户隐私,并且(2)使用来自信任网络的信息来提高建议的准确性,而(3)提供准确的隐私保护建议作为没有使用隐私保护方法或提高应用准确性的方法的建议。

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